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A Collaborative Learning Framework via Federated Meta-Learning

机译:通过联合元学习的协同学习框架

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Many IoT applications at the network edge demand intelligent decisions in a real-time manner. The edge device alone, however, often cannot achieve real-time edge intelligence due to its constrained computing resources and limited local data. To tackle these challenges, we propose a platform-aided collaborative learning framework where a model is first trained across a set of source edge nodes by a federated meta-learning approach, and then it is rapidly adapted to learn a new task at the target edge node, using a few samples only. Further, we investigate the convergence of the proposed federated meta-learning algorithm under mild conditions on node similarity and the adaptation performance at the target edge. To combat against the vulnerability of meta-learning algorithms to possible adversarial attacks, we further propose a robust version of the federated meta-learning algorithm based on distributionally robust optimization, and establish its convergence under mild conditions. Experiments on different datasets demonstrate the effectiveness of the proposed Federated Meta-Learning based framework.
机译:网络边缘的许多IOT应用程序以实时方式要求智能决策。然而,由于其约束的计算资源和有限的本地数据,因此单独的边缘设备通常无法实现实时边缘智能。为了解决这些挑战,我们提出了一个平台辅助协作学习框架,其中通过联合的元学习方法首次浏览一组源边缘节点的模型,然后迅速适应在目标边缘中学习新任务节点,仅使用少量样本。此外,我们研究了在节点相似性的温和条件下提出的联合元学习算法的收敛性和目标边缘的适应性能。为了打击Meta学习算法的脆弱性,对可能的对抗性攻击,我们进一步提出了一种基于分布鲁棒优化的联邦元学习算法的强大版本,并在温和条件下建立其收敛。不同数据集的实验证明了拟议的联邦荟萃学习框架的有效性。

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